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N-Back Memory Training

N-Back Memory Training APK

N-Back Memory Training APK

7.3 FreeE.A.L. ⇣ Download APK (12.26 MB)

Boost your IQ & working memory with the dual n-back task, supported by science

What's N-Back Memory Training APK?

N-Back Memory Training is a app for Android, It's developed by E.A.L. author.
First released on google play in 6 years ago and latest version released in 1 year ago.
This app has 87.1K download times on Google play and rated as 4.71 stars with 751 rated times.
This product is an app in Puzzle category. More infomartion of N-Back Memory Training on google play
Research suggests that n-back training may lead to gains in fluid intelligence (IQ) and working memory ability (Soveri et al., 2017).

If you rate N-Back Memory Training less than five stars, please leave a comment so that I can address your concerns; I truly value your feedback.

Instructions:


The object of the game is to hold various items in your working memory and actively update these items as the game progresses. With each new trial, press the match button if the current item matches the item that occurred a given number of trials in the past. The term “n-back” denotes how many trials (n) in the past you need to remember. By default, you will begin on 2-back, so press the match button if the current item matches the item that occurred 2 trials back in the past. For a simple demonstration of how to play single 2-back, see this video: https://www.youtube.com/watch?v=qSPOjA2rR0M .

Options:


N-Back Memory Training allows you to choose from a diverse set of items to store in working memory:
• the position of a square on a 3 x 3 grid
• sounds (letters, numbers, or piano notes)
• images (shapes, national flags, sports equipment)
• colors

By default, the app starts on dual n-back, using positions and sounds (letters). The “dual” in dual n-back simply denotes how many different item types you will need to remember. You may choose any combination of item types, from single n-back to quad n-back.

Track Progress and Compete with Other Users:


Track your daily progress using customizable, interactive graphs. You can also compare your high scores to other users around the world in real-time with premium mode (upgrade available within the app).

Scoring:


N-Back Memory Training measures your working memory accuracy using the discrimination index A' from signal detection theory (Stanislaw & Todorov, 1999). A’ generally ranges from 0.5 (random guessing) to 1.0 (perfect accuracy). A score of A' >= 0.90 advances you to the next level, and a score of A' <= 0.75 results in fallback to the previous n-back level (after one grace period). These settings can be changed in Manual Mode. For tracking your progress, A' is combined with your current n-back level so that scores range +/- 0.5 around your n-back level. For instance, on 2-back, an accuracy of A' = 1 will yield a score of 2.5, whereas A' = 0.5 will yield a score of 1.5.

Details:


A' = .5 + sign(H - F) * ((H - F)^2 + abs(H - F)) / (4 * max(H, F) - 4 * H * F)

where
Hit Rate (H) = hits / # signal trials
False-positive Rate (F) = false pos / # noise trials

see Stanislaw & Todorov (1999)

Lure Trials:


Within Settings, you can control the percentage of lure trials, which make the task more difficult. Lure trials present stimuli that occurred n-back plus or minus one trial. That is, they are offset one trial from the target trial (n-back).

Customize:


If you want to change the game speed, the number of trials, or anything else, simply go to Settings > Select Mode > Manual Mode. From there, you can customize virtually anything. You can also customize the app’s appearance by creating your own custom background using color gradients. You can find these options toward the bottom of the Settings menu.

Please send any comments, questions, or concerns to [email protected] .
Thanks for playing!
E. A. L.

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References



Soveri, A., Antfolk, J., Karlsson, L., Salo, B., & Laine, M. (2017). Working memory training revisited: A multi-level meta-analysis of n-back training studies. Psychonomic bulletin & review, 24(4), 1077-1096.

Stanislaw, H., & Todorov, N. (1999). Calculation of signal detection theory measures. Behavior research methods, instruments, & computers, 31(1), 137-149.

In-app background image credit: Réseau de neurones. If then else / Wikimedia, CC BY-SA